Understanding adaptive human driving behavior, in particular how drivers manage uncertainty, is of key importance for developing simulated human driver models that can be used in the evaluation and development of autonomous vehicles. However, existing traffic psychology models of adaptive driving behavior either lack computational rigor or only address specific scenarios and/or behavioral phenomena. While models developed in the fields of machine learning and robotics can effectively learn adaptive driving behavior from data, due to their black box nature, they offer little or no explanation of the mechanisms underlying the adaptive behavior. Thus, a generalizable, interpretable, computational model of adaptive human driving behavior is sti...
In recent years, there has been enormous public interest in autonomous vehicles (AV), with more than...
The abilities to understand the social interaction behaviors between a vehicle and its surroundings ...
Car drivers need to process sensory input providing detailed information about dynamic changes in th...
Objective. The objective was to better understand how people adapt multitasking behavior when circum...
In this paper we investigate the effect of the unpredictability of surrounding cars on an ego-car pe...
In this paper, we use the concept of artificial risk fields to predict how human operators control a...
As more and more autonomous vehicles (AVs) are being deployed on public roads, designing socially co...
Objective We aim to bridge the gap between naturalistic studies of driver behavior and modern cogni...
Current driving behaviour models are designed for specific scenarios, such as curve driving, obstacl...
This dissertation addresses the modeling of pedestrians in dynamic and urban environments interactin...
In the generation where progression in technology have propelled the research of human-machine intel...
The past decade has witnessed significant breakthroughs in autonomous driving technologies. We are h...
We present a computational model of intermittent visual sampling and locomotor control in a simple y...
models of human driver behavior and cognition, probabilistic driver model, Bayesian auto-nomous driv...
Negative effects of inattention on task performance can be seen in many contexts of society and huma...
In recent years, there has been enormous public interest in autonomous vehicles (AV), with more than...
The abilities to understand the social interaction behaviors between a vehicle and its surroundings ...
Car drivers need to process sensory input providing detailed information about dynamic changes in th...
Objective. The objective was to better understand how people adapt multitasking behavior when circum...
In this paper we investigate the effect of the unpredictability of surrounding cars on an ego-car pe...
In this paper, we use the concept of artificial risk fields to predict how human operators control a...
As more and more autonomous vehicles (AVs) are being deployed on public roads, designing socially co...
Objective We aim to bridge the gap between naturalistic studies of driver behavior and modern cogni...
Current driving behaviour models are designed for specific scenarios, such as curve driving, obstacl...
This dissertation addresses the modeling of pedestrians in dynamic and urban environments interactin...
In the generation where progression in technology have propelled the research of human-machine intel...
The past decade has witnessed significant breakthroughs in autonomous driving technologies. We are h...
We present a computational model of intermittent visual sampling and locomotor control in a simple y...
models of human driver behavior and cognition, probabilistic driver model, Bayesian auto-nomous driv...
Negative effects of inattention on task performance can be seen in many contexts of society and huma...
In recent years, there has been enormous public interest in autonomous vehicles (AV), with more than...
The abilities to understand the social interaction behaviors between a vehicle and its surroundings ...
Car drivers need to process sensory input providing detailed information about dynamic changes in th...